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A Novel Strategy for Minimum Attribute Reduction Based on Rough Set Theory and Fish Swarm Algorithm

机译:基于粗糙集理论和鱼群算法的最小属性降低的新策略

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摘要

For data mining, reducing the unnecessary redundant attributeswhichwas known as attribute reduction (AR), in particular, reducts with minimal cardinality, is an important preprocessing step. In the paper, by a coding method of combination subset of attributes set, a novel search strategy for minimal attribute reduction based on rough set theory (RST) and fish swarm algorithm (FSA) is proposed. The method identifies the core attributes by discernibility matrix firstly and all the subsets of noncore attribute sets with the same cardinality were encoded into integers as the individuals of FSA. Then, the evolutionary direction of the individual is limited to a certain extent by the codingmethod. The fitness function of an individual is defined based on the attribute dependency of RST, and FSA was used to find the optimal set of reducts. In each loop, if the maximum attribute dependency and the attribute dependency of condition attribute set are equal, then the algorithm terminates, otherwise adding a single attribute to the next loop. Some well-known datasets from UCI were selected to verify this method. The experimental results show that the proposed method searches the minimal attribute reduction set effectively and it has the excellent global search ability.
机译:对于数据挖掘,减少称为属性减少(AR)的不必要的冗余属性,特别是用最小基数减少,是一个重要的预处理步骤。在本文中,提出了一种基于粗糙集理论(RST)和FISH群算法(FSA)的基于粗糙集理论(RST)和鱼类群(FSA)的基于粗糙集理论(RST)和鱼类群(FSA)的小型搜索策略。该方法首先通过可辨别矩阵识别核心属性,并且具有与FSA的个体的整数中的所有非核属性集合集的所有子集都被编码为整数。然后,个人的进化方向被编码方法限制在一定程度上。基于RST的属性依赖性定义了个体的健身功能,并且FSA用于找到最佳的变换集。在每个循环中,如果条件属性集的最大属性依赖关系和属性依赖关系等于,则算法终止,否则将单个属性添加到下一个循环。选择来自UCI的一些众所周知的数据集以验证此方法。实验结果表明,所提出的方法搜索有效的最小属性减少集,它具有出色的全球搜索能力。

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